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Automated classification of subcellular patterns in multicell images without segmentation into single cells

机译:自动分类多细胞图像中的亚细胞模式,而无需分割成单个细胞

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Fluorescence microscope images capture information from an entire field of view, which often comprises several cells scattered on the slide. We have previously trained classifiers to accurately predict subcellular location patterns by using numerical features calculated from manually cropped 2D single-cell images. We describe here results on directly classifying fields of fluorescence microscope images using a subset of our previous features that do not require segmentation into single cells. Feature selection was conducted by stepwise discriminant analysis (SDA) to select the most discriminative features from the feature set. Better classification performance was achieved on multicell images than single-cell images, suggesting a promising future for classifying subcellular patterns in tissue images.
机译:荧光显微镜图像从整个视野中捕获信息,这通常包括散射在幻灯片上的几个单元。我们先前已经训练了分类器,以通过使用由手动裁剪的2D单小区图像计算的数值特征来准确地预测子细胞位置模式。我们在此描述使用我们以前的功能的子集直接对荧光显微镜图像的字段进行直接分类,这些特征不需要分段为单个单元格。特征选择是由逐步判别分析(SDA)进行的,以从功能集中选择最辨别的特征。比单个细胞图像在多单元图像上实现了更好的分类性能,这表明在组织图像中分类亚细胞图案的有希望的未来。

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